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Journal ArticleDOI

Empirical Nonparametric Bootstrap Strategies in Quantitative Trait Loci Mapping: Conditioning on the Genetic Model

C. Lebreton, +1 more
- 01 Jan 1998 - 
- Vol. 148, Iss: 1, pp 525-535
TLDR
It appears that the selective resampling schemes are either unbiased or least biased when the QTL is situated near the middle of the chromosome, but the problem open is how the method should be altered to take into account the bias of the original estimate of theQTL's position.
Abstract
Several nonparametric bootstrap methods are tested to obtain better confidence intervals for the quantitative trait loci (QTL) positions, i.e., with minimal width and unbiased coverage probability. Two selective resampling schemes are proposed as a means of conditioning the bootstrap on the number of genetic factors in our model inferred from the original data. The selection is based on criteria related to the estimated number of genetic factors, and only the retained bootstrapped samples will contribute a value to the empirically estimated distribution of the QTL position estimate. These schemes are compared with a nonselective scheme across a range of simple configurations of one QTL on a one-chromosome genome. In particular, the effect of the chromosome length and the relative position of the QTL are examined for a given experimental power, which determines the confidence interval size. With the test protocol used, it appears that the selective resampling schemes are either unbiased or least biased when the QTL is situated near the middle of the chromosome. When the QTL is closer to one end, the likelihood curve of its position along the chromosome becomes truncated, and the nonselective scheme then performs better inasmuch as the percentage of estimated confidence intervals that actually contain the real QTL's position is closer to expectation. The nonselective method, however, produces larger confidence intervals. Hence, we advocate use of the selective methods, regardless of the QTL position along the chromosome (to reduce confidence interval sizes), but we leave the problem open as to how the method should be altered to take into account the bias of the original estimate of the QTL's position.

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Journal ArticleDOI

QTL analysis in plants; where are we now?

Abstract: We have briefly reviewed the methods currently available for QTL analysis in segregating populations and summarized some of the conclusions arising from such analyses in plant populations We show that the analytical methods locate QTL with poor precision (10-30 cM), unless the heritability of an individual QTL is high Also the estimates of the QTL effects, particularly the dominance effects tend to be inflated because only large estimates are significant Estimates of numbers of QTL per trait are generally low ( 1, but seldom significantly greater These latter cases need further analysis Many QTL map close to candidate genes, and there is growing evidence from synteny studies of corresponding chromosome regions carrying similar QTL in different species However, unreliability of QTL location may suggest false candidates
Journal ArticleDOI

Study of the relationship between pre-harvest sprouting and grain color by quantitative trait loci analysis in a whitexred grain bread-wheat cross.

TL;DR: This work has studied a population of 194 recombinant inbred lines from the cross between two cultivars, ’Renan’ and ’Récital’, in order to detect QTLs for both PHS resistance and grain color.
Journal Article

Empirical threshold values for quantitative trait mapping.

Gary A. Churchill, +1 more
- 30 Oct 1994 - 
TL;DR: In this paper, an empirical method based on the concept of permutation test is proposed for estimating threshold values that are tailored to the experimental data at hand, which is demonstrated using two real data sets derived from F(2) and recombinant inbred plant populations.
Journal ArticleDOI

Mapping quantitative trait loci for milk production and health of dairy cattle in a large outbred pedigree.

TL;DR: Quantitative trait loci affecting milk production and health of dairy cattle were mapped in a very large Holstein granddaughter design, and some chromosomes showed some evidence for 2 linked QTL affecting the same trait.
Journal ArticleDOI

QTLs Associated with Resistance to Soybean Cyst Nematode in Soybean: Meta-Analysis of QTL Locations

TL;DR: Evaluated evidence for reported marker–QTL associations for resistance to SCN in soybean was evaluated and relatively reliable and useful information was extracted from the reported marker-QTL associated associations.
References
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Book

An introduction to the bootstrap

TL;DR: This article presents bootstrap methods for estimation, using simple arguments, with Minitab macros for implementing these methods, as well as some examples of how these methods could be used for estimation purposes.
Journal ArticleDOI

Empirical threshold values for quantitative trait mapping.

TL;DR: An empirical method is described, based on the concept of a permutation test, for estimating threshold values that are tailored to the experimental data at hand, and is demonstrated using two real data sets derived from F(2) and recombinant inbred plant populations.
Journal ArticleDOI

Mapping mendelian factors underlying quantitative traits using rflp linkage maps

TL;DR: In this paper, a set of analytical methods that modify and extend the classical theory for mapping such quantitative trait loci (QTLs) are described, and explicit graphs are provided that allow experimental geneticists to estimate, in any particular case, the number of progeny required to map QTLs underlying a quantitative trait.
Journal ArticleDOI

Precision mapping of quantitative trait loci.

TL;DR: A new method of QTL mapping is proposed and analyzed in this paper by combining interval mapping with multiple regression, an interval test in which the test statistic on a marker interval is made to be unaffected by QTLs located outside a defined interval.
Journal ArticleDOI

Bootstrap Confidence Intervals

TL;DR: Bootstrap methods for estimating confidence intervals have been surveyed in this article, with a focus on improving the accuracy of the standard confidence intervals in a way that allows routine application even to very complicated problems.
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